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Estimation and mapping of forest stand density, volume, and cover type using the k-nearest neighbors method

机译:使用k近邻法估算和绘制林分密度,体积和覆盖类型

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Mapping forest variables and associated characteristics is fundamental for forest planning and management. Considerable effort has been made in Northern Europe to develop techniques for wall-to-wall mapping of forest variables. Following that work, we describe the k-nearest neighbors (kNN) method for improving estimation and to produce wall-to-wall basal area, volume, and cover type maps, in the context of the USDA Forest Service's Forest Inventory and Analysis (FIA) monitoring system. Several variations within the kNN were tested, including: distance metric, weighting function, feature weighting parameters, and number of neighbors. Specific procedures to incorporate ancillary information and image enhancement techniques were also tested. Using the nearest neighbor (k = 1), Euclidean distance, a three date 18-band composite image, and feature weighting parameters, maps were constructed for basal area, volume, and cover type. The empirical, bootstrap based, 95% confidence interval for the basal area root mean square error (MSE) is (8.21, 9.02) m(2)/ha and for volume (48.68, 54.58) m(3)/ha. For the 13 FIA forest cover type classes, results indicated useful map accuracy and the choice of k = 1 retained the full range of forest types present in the region. The 95% confidence interval, obtained using the bootstrap 0.632+ technique, for the overall accuracy (OA) in the 13 cover type classification was (0.4952, 0.5459). Recommendations for applying the kNN method for mapping and regional estimation are provided. (C) 2001 Elsevier Science Inc, All rights reserved. [References: 48]
机译:映射森林变量和相关特征是森林规划和管理的基础。北欧在开发森林变量的逐壁制图技术方面已经做出了相当大的努力。在完成这项工作之后,我们将在美国农业部森林服务局的森林清单和分析(FIA)的背景下,描述k近邻(kNN)方法,以改进估计并生成墙到墙的基础面积,体积和覆盖类型图。 ) 监视系统。测试了kNN内的几种变体,包括:距离度量,权重函数,特征权重参数和邻居数。还测试了包含辅助信息和图像增强技术的特定程序。使用最近的邻居(k = 1),欧几里得距离,三日期18波段合成图像以及特征权重参数,构建了基础面积,体积和覆盖类型的地图。基于经验的基于引导程序的基础区域均方根误差(MSE)的95%置信区间为(8.21,9.02)m(2)/ ha和体积(48.68,54.58)m(3)/ ha。对于13种FIA森林覆盖类型类别,结果表明有用的地图准确性,并且k = 1的选择保留了该地区存在的所有森林类型。使用bootstrap 0.632+技术获得的95%置信区间在13种封面类型分类中的整体准确性(OA)为(0.4952,0.5459)。提供了将kNN方法应用于映射和区域估计的建议。 (C)2001 Elsevier Science Inc,保留所有权利。 [参考:48]

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